Abstract

The role of forests as a reservoir for carbon has prompted the need for timely and reliable estimation of aboveground carbon stocks. Since measurement of aboveground carbon stocks of forests is a destructive, costly and time-consuming activity, aerial and satellite remote sensing techniques have gained many attentions in this field. Despite the fact that using aerial data for predicting aboveground carbon stocks has been proved as a highly accurate method, there are challenges related to high acquisition costs, small area coverage, and limited availability of these data. These challenges are more critical for non-commercial forests located in low-income countries. Landsat program provides repetitive acquisition of high-resolution multispectral data, which are freely available. The aim of this study was to assess the potential of multispectral Landsat 8 Operational Land Imager (OLI) derived texture metrics in quantifying aboveground carbon stocks of coppice Oak forests in Zagros Mountains, Iran. We used four different window sizes (3×3, 5×5, 7×7, and 9×9), and four different offsets ([0,1], [1,1], [1,0], and [1,-1]) to derive nine texture metrics (angular second moment, contrast, correlation, dissimilar, entropy, homogeneity, inverse difference, mean, and variance) from four bands (blue, green, red, and infrared). Totally, 124 sample plots in two different forests were measured and carbon was calculated using species-specific allometric models. Stepwise regression analysis was applied to estimate biomass from derived metrics. Results showed that, in general, larger size of window for deriving texture metrics resulted models with better fitting parameters. In addition, the correlation of the spectral bands for deriving texture metrics in regression models was ranked as b4>b3>b2>b5. The best offset was [1,-1]. Amongst the different metrics, mean and entropy were entered in most of the regression models. Overall, different models based on derived texture metrics were able to explain about half of the variation in aboveground carbon stocks. These results demonstrated that Landsat 8 derived texture metrics can be applied for mapping aboveground carbon stocks of coppice Oak Forests in large areas.

Highlights

  • With a huge contribution to the global carbon (C) balance, forests play an important role in global carbon cycling (Wen and He, 2016, Chen et al, 2016)

  • The results of regression analysis for modelling aboveground forest carbon (AGC) based on derived Landsat 8 Operational Land Imager (OLI) textural metrics are presented in tables 1

  • For window size 5×5, the best textural metric was mean followed by entropy and contrast

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Summary

Introduction

With a huge contribution to the global carbon (C) balance, forests play an important role in global carbon cycling (Wen and He, 2016, Chen et al, 2016). The spatial heterogeneity of forest C stocks greatly increase the error of estimation obtained using field data (Dube and Mutanga, 2015a) To solve such problems, several studies have tried to evaluate accuracy of forest C estimation by using remotely sensed data (Kwak et al, 2010). Dube and Mutanga (2015b) reported R2 0.76 for estimating AGB in South Africa This aim of this research is to explore the potential of Landsat 8 OLI data in AGC estimation in coppice Oak forest of Zagros. Different window sizes, texture metrics, offsets, and spectral bands will be examined to find the most correlated data to AGC

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